A new resampling method for sampling designs without replacement: the doubled half bootstrap
Date issued
October 2014
In
Computational Statistics
Vol
5
No
29
From page
1345
To page
1363
Subjects
Poisson sampling Simple random sampling Unequal probability sampling Variance estimation
Abstract
A new and very fast method of bootstrap for sampling without replacement from a finite population is proposed. This method can be used to estimate the variance in sampling with unequal inclusion probabilities and does not require artificial populations or utilization of bootstrap weights. The bootstrap samples are directly selected from the original sample. The bootstrap procedure contains two steps: in the first step, units are selected once with Poisson sampling using the same inclusion probabilities as the original design. In the second step, amongst the non-selected units, half of the units are randomly selected twice. This procedure enables us to efficiently estimate the variance. A set of simulations show the advantages of this new resampling method.
Later version
http://link.springer.com/article/10.1007/s00180-014-0495-0
Publication type
journal article
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